10 research outputs found

    The Changing Landscape for Stroke\ua0Prevention in AF: Findings From the GLORIA-AF Registry Phase 2

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    Background GLORIA-AF (Global Registry on Long-Term Oral Antithrombotic Treatment in Patients with Atrial Fibrillation) is a prospective, global registry program describing antithrombotic treatment patterns in patients with newly diagnosed nonvalvular atrial fibrillation at risk of stroke. Phase 2 began when dabigatran, the first non\u2013vitamin K antagonist oral anticoagulant (NOAC), became available. Objectives This study sought to describe phase 2 baseline data and compare these with the pre-NOAC era collected during phase 1. Methods During phase 2, 15,641 consenting patients were enrolled (November 2011 to December 2014); 15,092 were eligible. This pre-specified cross-sectional analysis describes eligible patients\u2019 baseline characteristics. Atrial fibrillation disease characteristics, medical outcomes, and concomitant diseases and medications were collected. Data were analyzed using descriptive statistics. Results Of the total patients, 45.5% were female; median age was 71 (interquartile range: 64, 78) years. Patients were from Europe (47.1%), North America (22.5%), Asia (20.3%), Latin America (6.0%), and the Middle East/Africa (4.0%). Most had high stroke risk (CHA2DS2-VASc [Congestive heart failure, Hypertension, Age  6575 years, Diabetes mellitus, previous Stroke, Vascular disease, Age 65 to 74 years, Sex category] score  652; 86.1%); 13.9% had moderate risk (CHA2DS2-VASc = 1). Overall, 79.9% received oral anticoagulants, of whom 47.6% received NOAC and 32.3% vitamin K antagonists (VKA); 12.1% received antiplatelet agents; 7.8% received no antithrombotic treatment. For comparison, the proportion of phase 1 patients (of N = 1,063 all eligible) prescribed VKA was 32.8%, acetylsalicylic acid 41.7%, and no therapy 20.2%. In Europe in phase 2, treatment with NOAC was more common than VKA (52.3% and 37.8%, respectively); 6.0% of patients received antiplatelet treatment; and 3.8% received no antithrombotic treatment. In North America, 52.1%, 26.2%, and 14.0% of patients received NOAC, VKA, and antiplatelet drugs, respectively; 7.5% received no antithrombotic treatment. NOAC use was less common in Asia (27.7%), where 27.5% of patients received VKA, 25.0% antiplatelet drugs, and 19.8% no antithrombotic treatment. Conclusions The baseline data from GLORIA-AF phase 2 demonstrate that in newly diagnosed nonvalvular atrial fibrillation patients, NOAC have been highly adopted into practice, becoming more frequently prescribed than VKA in Europe and North America. Worldwide, however, a large proportion of patients remain undertreated, particularly in Asia and North America. (Global Registry on Long-Term Oral Antithrombotic Treatment in Patients With Atrial Fibrillation [GLORIA-AF]; NCT01468701

    Finishing the euchromatic sequence of the human genome

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    The sequence of the human genome encodes the genetic instructions for human physiology, as well as rich information about human evolution. In 2001, the International Human Genome Sequencing Consortium reported a draft sequence of the euchromatic portion of the human genome. Since then, the international collaboration has worked to convert this draft into a genome sequence with high accuracy and nearly complete coverage. Here, we report the result of this finishing process. The current genome sequence (Build 35) contains 2.85 billion nucleotides interrupted by only 341 gaps. It covers ∼99% of the euchromatic genome and is accurate to an error rate of ∼1 event per 100,000 bases. Many of the remaining euchromatic gaps are associated with segmental duplications and will require focused work with new methods. The near-complete sequence, the first for a vertebrate, greatly improves the precision of biological analyses of the human genome including studies of gene number, birth and death. Notably, the human enome seems to encode only 20,000-25,000 protein-coding genes. The genome sequence reported here should serve as a firm foundation for biomedical research in the decades ahead

    Effect of angiotensin-converting enzyme inhibitor and angiotensin receptor blocker initiation on organ support-free days in patients hospitalized with COVID-19

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    IMPORTANCE Overactivation of the renin-angiotensin system (RAS) may contribute to poor clinical outcomes in patients with COVID-19. Objective To determine whether angiotensin-converting enzyme (ACE) inhibitor or angiotensin receptor blocker (ARB) initiation improves outcomes in patients hospitalized for COVID-19. DESIGN, SETTING, AND PARTICIPANTS In an ongoing, adaptive platform randomized clinical trial, 721 critically ill and 58 non–critically ill hospitalized adults were randomized to receive an RAS inhibitor or control between March 16, 2021, and February 25, 2022, at 69 sites in 7 countries (final follow-up on June 1, 2022). INTERVENTIONS Patients were randomized to receive open-label initiation of an ACE inhibitor (n = 257), ARB (n = 248), ARB in combination with DMX-200 (a chemokine receptor-2 inhibitor; n = 10), or no RAS inhibitor (control; n = 264) for up to 10 days. MAIN OUTCOMES AND MEASURES The primary outcome was organ support–free days, a composite of hospital survival and days alive without cardiovascular or respiratory organ support through 21 days. The primary analysis was a bayesian cumulative logistic model. Odds ratios (ORs) greater than 1 represent improved outcomes. RESULTS On February 25, 2022, enrollment was discontinued due to safety concerns. Among 679 critically ill patients with available primary outcome data, the median age was 56 years and 239 participants (35.2%) were women. Median (IQR) organ support–free days among critically ill patients was 10 (–1 to 16) in the ACE inhibitor group (n = 231), 8 (–1 to 17) in the ARB group (n = 217), and 12 (0 to 17) in the control group (n = 231) (median adjusted odds ratios of 0.77 [95% bayesian credible interval, 0.58-1.06] for improvement for ACE inhibitor and 0.76 [95% credible interval, 0.56-1.05] for ARB compared with control). The posterior probabilities that ACE inhibitors and ARBs worsened organ support–free days compared with control were 94.9% and 95.4%, respectively. Hospital survival occurred in 166 of 231 critically ill participants (71.9%) in the ACE inhibitor group, 152 of 217 (70.0%) in the ARB group, and 182 of 231 (78.8%) in the control group (posterior probabilities that ACE inhibitor and ARB worsened hospital survival compared with control were 95.3% and 98.1%, respectively). CONCLUSIONS AND RELEVANCE In this trial, among critically ill adults with COVID-19, initiation of an ACE inhibitor or ARB did not improve, and likely worsened, clinical outcomes. TRIAL REGISTRATION ClinicalTrials.gov Identifier: NCT0273570

    Bias in regression analysis: Problems and solutions

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    Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This so-called exposure effect is often estimated using regression analysis, in which the outcome is regressed on the exposure. The distribution of the outcome determines which regression technique is most appropriate to estimate the exposure effect. In epidemiological research, linear- (for continuous outcomes), logistic- (for binary outcomes) and Cox regression (for survival outcomes) are most commonly applied. In general, the aim is to isolate the true effect of the exposure on the outcome. However, often the association between an exposure and an outcome is not entirely attributable to the exposure, i.e., the effect is biased. If this bias is not accounted for, then the estimated effect is not a good representation of the true underlying effect. This could, for instance, result in under- or overtreatment in patients and influence clinical decision making. Aim In this thesis, I provide non-technical and non-mathematical descriptions of various situations in which bias can occur in regression analysis and propose solutions where possible. I focus on four potential sources of bias: the estimation of non-linear effects, noncollapsibility, causal mediation analysis and competing risks. In each chapter the theory is illustrated using an empirical data example from the Longitudinal Aging Study Amsterdam or the Amsterdam Growth and Health Longitudinal Study. Some chapters additionally contain a simulation study to evaluate model performance and compare methods. Conclusion Although regression models are commonly used in epidemiological research to estimate exposure effects, researchers do often not consider the many different ways in which bias can occur. In this thesis, I reviewed four different potential sources of bias in regression analysis, and proposed solutions where possible. To avoid bias, it is recommended that researchers consider the potential sources in the pre-analysis phase and adapt their analysis if necessary. In addition, it is recommended to transparently report the measures taken to reduce bias and to carefully interpret the results, taking any remaining bias into consideration. Finally, I believe that the field of epidemiology would benefit from more non-technical and non-mathematical papers on advanced topics, as I aimed to contribute to with this thesis

    Bias in regression analysis: Problems and solutions

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    Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This so-called exposure effect is often estimated using regression analysis, in which the outcome is regressed on the exposure. The distribution of the outcome determines which regression technique is most appropriate to estimate the exposure effect. In epidemiological research, linear- (for continuous outcomes), logistic- (for binary outcomes) and Cox regression (for survival outcomes) are most commonly applied. In general, the aim is to isolate the true effect of the exposure on the outcome. However, often the association between an exposure and an outcome is not entirely attributable to the exposure, i.e., the effect is biased. If this bias is not accounted for, then the estimated effect is not a good representation of the true underlying effect. This could, for instance, result in under- or overtreatment in patients and influence clinical decision making. Aim In this thesis, I provide non-technical and non-mathematical descriptions of various situations in which bias can occur in regression analysis and propose solutions where possible. I focus on four potential sources of bias: the estimation of non-linear effects, noncollapsibility, causal mediation analysis and competing risks. In each chapter the theory is illustrated using an empirical data example from the Longitudinal Aging Study Amsterdam or the Amsterdam Growth and Health Longitudinal Study. Some chapters additionally contain a simulation study to evaluate model performance and compare methods. Conclusion Although regression models are commonly used in epidemiological research to estimate exposure effects, researchers do often not consider the many different ways in which bias can occur. In this thesis, I reviewed four different potential sources of bias in regression analysis, and proposed solutions where possible. To avoid bias, it is recommended that researchers consider the potential sources in the pre-analysis phase and adapt their analysis if necessary. In addition, it is recommended to transparently report the measures taken to reduce bias and to carefully interpret the results, taking any remaining bias into consideration. Finally, I believe that the field of epidemiology would benefit from more non-technical and non-mathematical papers on advanced topics, as I aimed to contribute to with this thesis

    Effect of Antiplatelet Therapy on Survival and Organ Support–Free Days in Critically Ill Patients With COVID-19

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    The Changing Landscape for Stroke\ua0Prevention in AF

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    The Changing Landscape for Stroke Prevention in AF

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